Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression
This study aims to predict the compressive strength of concrete using a machine-learning algorithm with linear regression analysis and to evaluate its accuracy. The open-source software library TensorFlow was used to develop the machine-learning algorithm. In the machine-earning algorithm, a total o...
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doaj-26d52e0e97ef49699c4375f3e711236e2021-04-24T23:03:31ZengMDPI AGApplied Sciences2076-34172021-04-01113866386610.3390/app11093866Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear RegressionJun-Ryeol Park0Hye-Jin Lee1Keun-Hyeok Yang2Jung-Keun Kook3Sanghee Kim4Department of Architectural Engineering, Kyonggi University, Suwon 16227, KoreaDepartment of Architectural Engineering, Kyonggi University, Suwon 16227, KoreaDepartment of Architectural Engineering, Kyonggi University, Suwon 16227, KoreaDepartment of Architectural Engineering & Urban Engineering, Jeonbuk National University, Jeonju 54896, KoreaDepartment of Architectural Engineering, Kyonggi University, Suwon 16227, KoreaThis study aims to predict the compressive strength of concrete using a machine-learning algorithm with linear regression analysis and to evaluate its accuracy. The open-source software library TensorFlow was used to develop the machine-learning algorithm. In the machine-earning algorithm, a total of seven variables were set: water, cement, fly ash, blast furnace slag, sand, coarse aggregate, and coarse aggregate size. A total of 4297 concrete mixtures with measured compressive strengths were employed to train and testing the machine-learning algorithm. Of these, 70% were used for training, and 30% were utilized for verification. For verification, the research was conducted by classifying the mixtures into three cases: the case where the machine-learning algorithm was trained using all the data (Case-1), the case where the machine-learning algorithm was trained while maintaining the same number of training dataset for each strength range (Case-2), and the case where the machine-learning algorithm was trained after making the subcase of each strength range (Case-3). The results indicated that the error percentages of Case-1 and Case-2 did not differ significantly. The error percentage of Case-3 was far smaller than those of Case-1 and Case-2. Therefore, it was concluded that the range of training dataset of the concrete compressive strength is as important as the amount of training dataset for accurately predicting the concrete compressive strength using the machine-learning algorithm.https://www.mdpi.com/2076-3417/11/9/3866compressive strength of concreteTensorFlowlinear regressionconcrete mixtureartificial neural network |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jun-Ryeol Park Hye-Jin Lee Keun-Hyeok Yang Jung-Keun Kook Sanghee Kim |
spellingShingle |
Jun-Ryeol Park Hye-Jin Lee Keun-Hyeok Yang Jung-Keun Kook Sanghee Kim Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression Applied Sciences compressive strength of concrete TensorFlow linear regression concrete mixture artificial neural network |
author_facet |
Jun-Ryeol Park Hye-Jin Lee Keun-Hyeok Yang Jung-Keun Kook Sanghee Kim |
author_sort |
Jun-Ryeol Park |
title |
Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression |
title_short |
Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression |
title_full |
Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression |
title_fullStr |
Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression |
title_full_unstemmed |
Study on Influence of Range of Data in Concrete Compressive Strength with Respect to the Accuracy of Machine Learning with Linear Regression |
title_sort |
study on influence of range of data in concrete compressive strength with respect to the accuracy of machine learning with linear regression |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2021-04-01 |
description |
This study aims to predict the compressive strength of concrete using a machine-learning algorithm with linear regression analysis and to evaluate its accuracy. The open-source software library TensorFlow was used to develop the machine-learning algorithm. In the machine-earning algorithm, a total of seven variables were set: water, cement, fly ash, blast furnace slag, sand, coarse aggregate, and coarse aggregate size. A total of 4297 concrete mixtures with measured compressive strengths were employed to train and testing the machine-learning algorithm. Of these, 70% were used for training, and 30% were utilized for verification. For verification, the research was conducted by classifying the mixtures into three cases: the case where the machine-learning algorithm was trained using all the data (Case-1), the case where the machine-learning algorithm was trained while maintaining the same number of training dataset for each strength range (Case-2), and the case where the machine-learning algorithm was trained after making the subcase of each strength range (Case-3). The results indicated that the error percentages of Case-1 and Case-2 did not differ significantly. The error percentage of Case-3 was far smaller than those of Case-1 and Case-2. Therefore, it was concluded that the range of training dataset of the concrete compressive strength is as important as the amount of training dataset for accurately predicting the concrete compressive strength using the machine-learning algorithm. |
topic |
compressive strength of concrete TensorFlow linear regression concrete mixture artificial neural network |
url |
https://www.mdpi.com/2076-3417/11/9/3866 |
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